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Status Functionality already exists
Created by Guest
Created on Mar 4, 2026

AIOPs MAD should support better forcasing ( two hour horizan ) and predective alerting

Criteria

·       Accurately forecast future operational conditions, capacity trends, performance patterns, and potential anomalies.

·       Clearly explain AI-driven forecasts by identifying the main that influence the predictions.

·       Demonstrate continuous improvement in forecast accuracy by comparing prediction errors over time as the solution learns from both historical data collected before the PoV and new data gathered during the PoV period.

 

Current Status

This aspect remains unclear to us. We previously discussed the possibility of extending metric forecasting beyond the current two-hour horizon to provide longer-term predictive insights. However, we still need to see this demonstrated in practice, particularly how such forecasts would be surfaced within the platform and how users would observe or be alerted to them.

Idea priority High